State Key Laboratory of Environmental Criteria and Risk Assessment, Chinese Research Academy of Environmental Sciences, Beijing 100012, China; College of Environmental Science and Engineering, Tongji University, Shanghai 200092, China.
State Key Laboratory of Environmental Criteria and Risk Assessment, Chinese Research Academy of Environmental Sciences, Beijing 100012, China.
Environ Int. 2022 Sep;167:107367. doi: 10.1016/j.envint.2022.107367. Epub 2022 Jun 21.
Alkylphenols (APs) are ubiquitous and generally present in higher residue levels in the environment. The present work focuses on the development of a set of in silico models to predict the aquatic toxicity of APs with incomplete/unknown toxicity data in aquatic environments. To achieve this, a QSAR-ICE-SSD model was constructed for aquatic organisms by combining quantitative structure-activity relationship (QSAR), interspecies correlation estimation (ICE), and species sensitivity distribution (SSD) models in order to obtain the hazardous concentrations (HCs) of selected APs. The research indicated that the keywords "alkylphenol" and "nonylphenol" were most commonly studied. The selected ICE models were robust (R: 0.70-0.99; p-value < 0.01). All models had a high reliability cross- validation success rates (>75%), and the HC predicted with the QSAR-ICE-SSD model was 2-fold than that derived with measured experimental data. The HC values demonstrated nearly linear decreasing trend from 2-MP to 4-HTP, while the decreasing trend from 4-HTP to 4-DP became shallower, indicates that the toxicity of APs to aquatic organisms increases with the addition of alkyl carbon chain lengths. The ecological risks assessment (ERA) of APs revealed that aquatic organisms were at risk from exposure to 4-NP at most river stations (the highest risk quotient (RQ) = 1.51), with the highest relative risk associated with 2.9% of 4-NP detected in 82.9% of the sampling sites. The targeted APs posed potential ecological risks in the Yongding and Beiyun River according to the mixture ERA. The potential application of QSAR-ICE-SSD models could satisfy the immediate needs for HC derivations without the need for additional in vivo testing.
烷基酚(APs)普遍存在,且在环境中通常残留水平较高。本研究旨在开发一套用于预测水生环境中具有不完全/未知毒性数据的 APs 水生毒性的计算模型。为此,通过将定量构效关系(QSAR)、种间相关估计(ICE)和物种敏感性分布(SSD)模型相结合,为水生生物构建了 QSAR-ICE-SSD 模型,以获得所选 APs 的危险浓度(HCs)。研究表明,“烷基酚”和“壬基酚”是最常被研究的关键词。所选 ICE 模型具有稳健性(R:0.70-0.99;p 值<0.01)。所有模型的可靠性交叉验证成功率都很高(>75%),QSAR-ICE-SSD 模型预测的 HC 是实测实验数据的两倍。HC 值从 2-MP 到 4-HTP 呈近线性递减趋势,而从 4-HTP 到 4-DP 的递减趋势变缓,表明 APs 对水生生物的毒性随烷基碳链长度的增加而增加。APs 的生态风险评估(ERA)表明,在大多数河流站,水生生物都面临接触 4-NP 的风险(最高风险商数(RQ)=1.51),其中 82.9%的采样点中 4-NP 的检出率最高,相对风险最高,为 2.9%。根据混合 ERA,永定河和北运河流域的目标 APs 存在潜在的生态风险。QSAR-ICE-SSD 模型的潜在应用可以满足 HC 推导的迫切需求,而无需进行额外的体内测试。